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Comparative Study: The Implementation of Machine Learning Method for Sentiment Analysis in Social Media. A Recommendation for Future Research

机译:比较研究:社交媒体中情感分析的机器学习方法的实现。未来研究建议

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摘要

Evolution of Web 2.0 with user generated content produces very large data, is triggered the growth and use of high levels of social media. In the USA only, users of social media since 2006 grew by 356%. Statistics indicate in online 2.27 billion people, 140 million twitter's active users, 50 million active users of Instagram, etc. The phenomenon causes birth-related research and development of social media, one of which sentiment analysis. Research conducted using a variety of methods of sentiment analysis, supervised learning, unsupervised learning (lexicon based) and hybrid methods. This paper is a comparative study on the methods used by the limitations of the use of supervised learning approaches. The comparative study conducted on the study period of 5 years back (2012-2008). The purpose of this study is to make a list of the advantages and disadvantages of the method and data used and need to be improvised, so as to provide recommendations or references for future research.
机译:Web 2.0随着用户生成的内容的演变而产生大量数据,引发了高级社交媒体的增长和使用。仅在美国,自2006年以来,社交媒体的用户增长了356%。统计数据显示,在线22.7亿人口中,有1.4亿推特活跃用户,5000万Instagram活跃用户等。这种现象引起了与出生相关的社交媒体研究与开发,这是情感分析之一。使用多种情感分析方法,监督学习,无监督学习(基于词典)和混合方法进行的研究。本文是对受监督学习方法使用限制的方法的比较研究。这项比较研究是在5年前的研究期间(2012-2008)进行的。这项研究的目的是列出所用方法和数据的优缺点清单,并需要即兴进行,以便为以后的研究提供建议或参考。

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